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Mitigating Dataset Imbalance via Joint Generation and Classification

机译:通过联合生成和分类缓解数据集不平衡

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Supervised deep learning methods are enjoying enormous success in many practical applications of computer vision and have the potential to revolutionize robotics. However, the marked performance degradation to biases and imbalanced data questions the reliability of these methods. In this work we address these questions from the perspective of dataset imbalance resulting out of severe under-representation of annotated training data for certain classes and its effect on both deep classification and generation methods. We introduce a joint dataset repairment strategy by combining a neural network classifier with Generative Adversarial Networks (GAN) that makes up for the deficit of training examples from the under-representated class by producing additional training examples. We show that the combined training helps to improve the robustness of both the classifier and the GAN against severe class imbalance. We show the effectiveness of our proposed approach on three very different datasets with different degrees of imbalance in them.
机译:监督深度学习方法在计算机视觉许多实际应用中享有巨大成功,并有可能彻底改变机器人学。然而,标记的性能下降到偏置和不平衡数据问题这些方法的可靠性。在这项工作中,我们从DataSet失败的角度解决了这些问题,导致某些课程的注释培训数据的严重陈述及其对深度分类和生成方法的影响。我们通过将神经网络分类器与生成的对抗性网络(GAN)组合来介绍一个联合数据集修理策略,该网络通过产生额外的训练示例来弥补来自非代表性的类的训练示例的缺陷。我们表明合并的培训有助于提高分类器和GAN的稳健性,反对严重的级别不平衡。我们在三个非常不同的数据集中展示了我们提出的方法的有效性,其不同程度的不平衡。

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